Jointly Modeling Intra- and Inter-transaction Dependencies with
Hierarchical Attentive Transaction Embeddings for Next-item Recommendation
- URL: http://arxiv.org/abs/2006.04530v1
- Date: Sat, 30 May 2020 14:04:19 GMT
- Title: Jointly Modeling Intra- and Inter-transaction Dependencies with
Hierarchical Attentive Transaction Embeddings for Next-item Recommendation
- Authors: Shoujin Wang, Longbing Cao, Liang Hu, Shlomo Berkovsky, Xiaoshui
Huang, Lin Xiao, Wenpeng Lu
- Abstract summary: A transaction-based recommender system (TBRS) aims to predict the next item by modeling dependencies in transactional data.
Most existing methods recommend next item by only modeling the intra-transaction dependency within the current transaction.
We propose a novel hierarchical attentive transaction embedding (HATE) model to tackle these issues.
- Score: 43.09242534398912
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A transaction-based recommender system (TBRS) aims to predict the next item
by modeling dependencies in transactional data. Generally, two kinds of
dependencies considered are intra-transaction dependency and inter-transaction
dependency. Most existing TBRSs recommend next item by only modeling the
intra-transaction dependency within the current transaction while ignoring
inter-transaction dependency with recent transactions that may also affect the
next item. However, as not all recent transactions are relevant to the current
and next items, the relevant ones should be identified and prioritized. In this
paper, we propose a novel hierarchical attentive transaction embedding (HATE)
model to tackle these issues. Specifically, a two-level attention mechanism
integrates both item embedding and transaction embedding to build an attentive
context representation that incorporates both intraand inter-transaction
dependencies. With the learned context representation, HATE then recommends the
next item. Experimental evaluations on two real-world transaction datasets show
that HATE significantly outperforms the state-ofthe-art methods in terms of
recommendation accuracy.
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